
We finally have an update for...PNG?
Posted Jun 25, 2025 at 1:50 PM UTC We finally have an update for...PNG?
Launching 22 years after its last major update, the latest PNG spec now includes native support for HDR, APNG animations, and Exif metadata for embedding information into image files. W3C PNG Working Group chair Chris Blume says Chrome, Safari, Firefox, iOS, macOS, and Adobe Photoshop already support the new standard, and that upcoming updates will improve compression and dynamic range support. PNG is back!
[programmax.net]

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